Proof-of-Concept Prototype of Deep Learning Based Channel Mapping Using An Autonomous Channel Measurement System

abstract: The recent increase in users of cellular networks necessitates the use of new technologies to meet this demand. Massive multiple input multiple output (MIMO) communication systems have great potential for increasing the network capacity of the emerging 5G+ cellular networks. However, lever...

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Other Authors: Booth, Jayden Charles (Author)
Format: Dissertation
Language:English
Published: 2020
Subjects:
Online Access:http://hdl.handle.net/2286/R.I.62693
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spelling ndltd-asu.edu-item-626932020-12-09T05:00:38Z Proof-of-Concept Prototype of Deep Learning Based Channel Mapping Using An Autonomous Channel Measurement System abstract: The recent increase in users of cellular networks necessitates the use of new technologies to meet this demand. Massive multiple input multiple output (MIMO) communication systems have great potential for increasing the network capacity of the emerging 5G+ cellular networks. However, leveraging the multiplexing and beamforming gains from these large-scale MIMO systems requires the channel knowlege between each antenna and each user. Obtaining channel information on such a massive scale is not feasible with the current technology available due to the complexity of such large systems. Recent research shows that deep learning methods can lead to interesting gains for massive MIMO systems by mapping the channel information from the uplink frequency band to the channel information for the downlink frequency band as well as between antennas at nearby locations. This thesis presents the research to develop a deep learning based channel mapping proof-of-concept prototype. Due to deep neural networks' need of large training sets for accurate performance, this thesis outlines the design and implementation of an autonomous channel measurement system to analyze the performance of the proposed deep learning based channel mapping concept. This system obtains channel magnitude measurements from eight antennas autonomously using a mobile robot carrying a transmitter which receives wireless commands from the central computer connected to the static receiver system. The developed autonomous channel measurement system is capable of obtaining accurate and repeatable channel magnitude measurements. It is shown that the proposed deep learning based channel mapping system accurately predicts channel information containing few multi-path effects. Dissertation/Thesis Booth, Jayden Charles (Author) Spanias, Andreas (Advisor) Alkhateeb, Ahmed (Advisor) Ewaisha, Ahmed (Committee member) Arizona State University (Publisher) Computer engineering Deep Learning Machine Learning Massive MIMO Software Defined Radio eng 122 pages Masters Thesis Electrical Engineering 2020 Masters Thesis http://hdl.handle.net/2286/R.I.62693 http://rightsstatements.org/vocab/InC/1.0/ 2020
collection NDLTD
language English
format Dissertation
sources NDLTD
topic Computer engineering
Deep Learning
Machine Learning
Massive MIMO
Software Defined Radio
spellingShingle Computer engineering
Deep Learning
Machine Learning
Massive MIMO
Software Defined Radio
Proof-of-Concept Prototype of Deep Learning Based Channel Mapping Using An Autonomous Channel Measurement System
description abstract: The recent increase in users of cellular networks necessitates the use of new technologies to meet this demand. Massive multiple input multiple output (MIMO) communication systems have great potential for increasing the network capacity of the emerging 5G+ cellular networks. However, leveraging the multiplexing and beamforming gains from these large-scale MIMO systems requires the channel knowlege between each antenna and each user. Obtaining channel information on such a massive scale is not feasible with the current technology available due to the complexity of such large systems. Recent research shows that deep learning methods can lead to interesting gains for massive MIMO systems by mapping the channel information from the uplink frequency band to the channel information for the downlink frequency band as well as between antennas at nearby locations. This thesis presents the research to develop a deep learning based channel mapping proof-of-concept prototype. Due to deep neural networks' need of large training sets for accurate performance, this thesis outlines the design and implementation of an autonomous channel measurement system to analyze the performance of the proposed deep learning based channel mapping concept. This system obtains channel magnitude measurements from eight antennas autonomously using a mobile robot carrying a transmitter which receives wireless commands from the central computer connected to the static receiver system. The developed autonomous channel measurement system is capable of obtaining accurate and repeatable channel magnitude measurements. It is shown that the proposed deep learning based channel mapping system accurately predicts channel information containing few multi-path effects. === Dissertation/Thesis === Masters Thesis Electrical Engineering 2020
author2 Booth, Jayden Charles (Author)
author_facet Booth, Jayden Charles (Author)
title Proof-of-Concept Prototype of Deep Learning Based Channel Mapping Using An Autonomous Channel Measurement System
title_short Proof-of-Concept Prototype of Deep Learning Based Channel Mapping Using An Autonomous Channel Measurement System
title_full Proof-of-Concept Prototype of Deep Learning Based Channel Mapping Using An Autonomous Channel Measurement System
title_fullStr Proof-of-Concept Prototype of Deep Learning Based Channel Mapping Using An Autonomous Channel Measurement System
title_full_unstemmed Proof-of-Concept Prototype of Deep Learning Based Channel Mapping Using An Autonomous Channel Measurement System
title_sort proof-of-concept prototype of deep learning based channel mapping using an autonomous channel measurement system
publishDate 2020
url http://hdl.handle.net/2286/R.I.62693
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